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博茨瓦纳奥卡万戈三角洲蓝藻水华异常增加背后的环境驱动因素。

Environmental drivers behind the exceptional increase in cyanobacterial blooms in Okavango Delta, Botswana.

作者信息

Veerman Jan, Mishra Deepak R, Kumar Abhishek, Karidozo Malvern

机构信息

Center for Geospatial Research, Department of Geography, University of Georgia, Athens, GA, 30602, USA.

Center for Geospatial Research, Department of Geography, University of Georgia, Athens, GA, 30602, USA.

出版信息

Harmful Algae. 2024 Aug;137:102677. doi: 10.1016/j.hal.2024.102677. Epub 2024 Jun 19.

DOI:10.1016/j.hal.2024.102677
PMID:39003028
Abstract

The Okavango Delta region in Botswana experienced exceptionally intense landscape-wide cyanobacterial harmful algal blooms (CyanoHABs) in 2020. In this study, the drivers behind CyanoHABs were determined from thirteen independent environmental variables, including vegetation indices, climate and meteorological parameters, and landscape variables. Annual Land Use Land Cover (LULC) maps were created from 2017 to 2020, with ∼89% accuracy to compute landscape variables such as LULC change. Generalized Additive Models (GAM) and Structural Equation Models (SEM) were used to determine the most important drivers behind the CyanoHABs. Normalized Difference Chlorophyll Index (NDCI) and Green Line Height (GLH) algorithms served as proxies for chlorophyll-a (green algae) and phycocyanin (cyanobacteria) concentrations. GAM models showed that seven out of the thirteen variables explained 89.9% of the variance for GLH. The models showcased that climate variables, including monthly precipitation (8.8%) and Palmer Severity Drought Index- PDSI (3.2%), along with landscape variables such as changes in Wetlands area (7.5%), and Normalized Difference Vegetation Index (NDVI) (5.4%) were the determining drivers behind the increased cyanobacterial activity within the Delta. Both PDSI and NDVI showed negative correlations with GLH, indicating that increased drought conditions could have led to large increases in toxic CyanoHAB activity within the region. This study provides new information about environmental drivers which can help monitor and predict regions at risk of future severe CyanoHABs outbreaks in the Okavango Delta, Botswana, and other similar data-scarce and ecologically sensitive areas in Africa. Plain Language Summary: The waters of the Okavango Delta in Northern Botswana experienced an exceptional increase in toxic cyanobacterial activity in recent years. Cyanobacterial blooms have been shown to affect local communities and wildlife in the past. To determine the drivers behind this increased bloom activity, we analyzed the effects of thirteen independent environmental variables using two different statistical models. Within this research, we focused on vegetation indices, meteorological, and landscape variables, as previous studies have shown their effect on cyanobacterial activity in other parts of the world. While driver determination for cyanobacteria has been done before, the environmental conditions most important for cyanobacterial growth can be specific to the geographic setting of a study site. The statistical analysis indicated that the increases in cyanobacterial bloom activity within the region were mainly driven by persistent drier conditions. To our knowledge, this is the first study to determine the driving factors behind cyanobacterial activity in this region of the world. Our findings will help to predict and monitor areas at risk of future severe cyanobacterial blooms in the Okavango Delta and other similar African ecosystems.

摘要

2020年,博茨瓦纳的奥卡万戈三角洲地区经历了异常强烈的全景观蓝藻有害藻华(CyanoHABs)。在本研究中,从13个独立的环境变量中确定了CyanoHABs背后的驱动因素,这些变量包括植被指数、气候和气象参数以及景观变量。利用2017年至2020年的数据创建了年度土地利用土地覆盖(LULC)地图,计算LULC变化等景观变量的准确率约为89%。使用广义相加模型(GAM)和结构方程模型(SEM)来确定CyanoHABs背后最重要的驱动因素。归一化差异叶绿素指数(NDCI)和绿线高度(GLH)算法分别作为叶绿素a(绿藻)和藻蓝蛋白(蓝藻)浓度的替代指标。GAM模型显示,13个变量中的7个解释了GLH方差的89.9%。模型表明,气候变量,包括月降水量(8.8%)和帕尔默严重干旱指数-PDSI(3.2%),以及景观变量,如湿地面积变化(7.5%)和归一化差异植被指数(NDVI)(5.4%),是三角洲内蓝藻活性增加的决定性驱动因素。PDSI和NDVI与GLH均呈负相关,表明干旱条件增加可能导致该地区有毒CyanoHAB活性大幅增加。本研究提供了有关环境驱动因素的新信息,有助于监测和预测博茨瓦纳奥卡万戈三角洲以及非洲其他类似数据稀缺和生态敏感地区未来发生严重CyanoHABs爆发风险的区域。

通俗易懂的总结

近年来,博茨瓦纳北部奥卡万戈三角洲的水域有毒蓝藻活性异常增加。过去已证明蓝藻水华会影响当地社区和野生动物。为了确定这种水华活动增加背后的驱动因素,我们使用两种不同的统计模型分析了13个独立环境变量的影响。在这项研究中,我们关注植被指数、气象和景观变量,因为先前的研究已表明它们对世界其他地区蓝藻活性有影响。虽然之前已经对蓝藻的驱动因素进行了测定,但对蓝藻生长最重要的环境条件可能因研究地点的地理环境而异。统计分析表明,该地区蓝藻水华活动的增加主要是由持续干旱条件驱动的。据我们所知,这是第一项确定世界该地区蓝藻活性背后驱动因素的研究。我们的研究结果将有助于预测和监测奥卡万戈三角洲及其他类似非洲生态系统中未来发生严重蓝藻水华风险的区域。

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